Boosting Algorithms for Maximizing the Soft Margin
Rätsch, Gunnar, Warmuth, Manfred K. K., Glocer, Karen A.
–Neural Information Processing Systems
We present a novel boosting algorithm, called SoftBoost, designed for sets of binary labeled examples that are not necessarily separable by convex combinations of base hypotheses. Our algorithm achieves robustness by capping the distributions on the examples. Our update of the distribution is motivated by minimizing a relative entropy subject to the capping constraints and constraints on the edges of the obtained base hypotheses. The capping constraints imply a soft margin in the dual optimization problem. Our algorithm produces a convex combination of hypotheses whose soft margin is within δ of its maximum.
Neural Information Processing Systems
Dec-31-2008
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